# dealing with missing values with the R filter() function

I'd like to handle missing values using the `filter()` function in R.

In fact, I wish to compute `X_t = 1/(2*T+1) * sum(X_i, i = (t-T)...(t+T))` where `(X_t)` is a classical time series containing missing values. `filter()` computes sums over the time intervals `[(t-T);(t+T)]` but it does not give the mean of the values excluding the `NA`s.

Does anyone have any idea how about dealing with that?

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Please provide us with sample data and the code you have used so far. This will make it easier to answer your question. –  Andrie Aug 18 '11 at 9:09

Try this:

``````> library(zoo)
> x <- 1:10
> x[6] <- NA
> rollapply(x, 3, mean, na.rm = TRUE)
[1] 2.0 3.0 4.0 4.5 6.0 7.5 8.0 9.0
``````

There are a variety of other arguments that you may or may not need depending on exactly what you want to get out. See `?rollapply` .

REVISED Have updated answer based on more recent version of `rollapply` which allows simplification.

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Thanks very much for your answer. That's exactly what I was looking for ! –  Yaya Aug 19 '11 at 8:01

The sapply trick did not quite work for me. You have to manipulate the initial vector to get it to work with Ks larger than 1. Here is my code:

``````k <- 1  ## Moving average over three points.
x <- c(rep(1,5), NA, rep(1,5)) # input vector
stmp <- c( rep(NA,k), x, rep(NA,k) )
smooth <- sapply((k+1):(k+length(x)), function(i){mean(x[(i-k):(i+k)], na.rm=TRUE)})
``````

I also added a function statement so the code runs without error. Hope it helps :)

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If you want a simple moving average over `2k+1` points, you can do this:

``````x <- c(rep(1,5), NA, rep(1,5))
k <- 1  ## Moving average over three points.
smooth <- sapply(1:length(x), mean(x[(i-k):(i+k)], na.rm=TRUE))
``````

which results in a vector of all ones in this case.

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